Literature DB >> 35681091

Big data, machine learning, and population health: predicting cognitive outcomes in childhood.

Andrea K Bowe1, Gordon Lightbody2,3, Anthony Staines4, Deirdre M Murray2.   

Abstract

The application of machine learning (ML) to address population health challenges has received much less attention than its application in the clinical setting. One such challenge is addressing disparities in early childhood cognitive development-a complex public health issue rooted in the social determinants of health, exacerbated by inequity, characterised by intergenerational transmission, and which will continue unabated without novel approaches to address it. Early life, the period of optimal neuroplasticity, presents a window of opportunity for early intervention to improve cognitive development. Unfortunately for many, this window will be missed, and intervention may never occur or occur only when overt signs of cognitive delay manifest. In this review, we explore the potential value of ML and big data analysis in the early identification of children at risk for poor cognitive outcome, an area where there is an apparent dearth of research. We compare and contrast traditional statistical methods with ML approaches, provide examples of how ML has been used to date in the field of neurodevelopmental disorders, and present a discussion of the opportunities and risks associated with its use at a population level. The review concludes by highlighting potential directions for future research in this area. IMPACT: To date, the application of machine learning to address population health challenges in paediatrics lags behind other clinical applications. This review provides an overview of the public health challenge we face in addressing disparities in childhood cognitive development and focuses on the cornerstone of early intervention. Recent advances in our ability to collect large volumes of data, and in analytic capabilities, provide a potential opportunity to improve current practices in this field. This review explores the potential role of machine learning and big data analysis in the early identification of children at risk for poor cognitive outcomes.
© 2022. The Author(s).

Entities:  

Year:  2022        PMID: 35681091     DOI: 10.1038/s41390-022-02137-1

Source DB:  PubMed          Journal:  Pediatr Res        ISSN: 0031-3998            Impact factor:   3.953


  57 in total

Review 1.  Developmental origins of health and disease: brief history of the approach and current focus on epigenetic mechanisms.

Authors:  Pathik D Wadhwa; Claudia Buss; Sonja Entringer; James M Swanson
Journal:  Semin Reprod Med       Date:  2009-08-26       Impact factor: 1.303

Review 2.  Fetal nutrition and cardiovascular disease in adult life.

Authors:  D J Barker; P D Gluckman; K M Godfrey; J E Harding; J A Owens; J S Robinson
Journal:  Lancet       Date:  1993-04-10       Impact factor: 79.321

Review 3.  Experience-dependent structural plasticity in the cortex.

Authors:  Min Fu; Yi Zuo
Journal:  Trends Neurosci       Date:  2011-04       Impact factor: 13.837

Review 4.  Early intervention in neurodevelopmental disorders: underlying neural mechanisms.

Authors:  Giovanni Cioni; Emanuela Inguaggiato; Giuseppina Sgandurra
Journal:  Dev Med Child Neurol       Date:  2016-03       Impact factor: 5.449

5.  Infant mortality, childhood nutrition, and ischaemic heart disease in England and Wales.

Authors:  D J Barker; C Osmond
Journal:  Lancet       Date:  1986-05-10       Impact factor: 79.321

6.  The influence of childhood IQ and education on social mobility in the Newcastle Thousand Families birth cohort.

Authors:  Lynne F Forrest; Susan Hodgson; Louise Parker; Mark S Pearce
Journal:  BMC Public Health       Date:  2011-11-25       Impact factor: 3.295

7.  Early life determinants of low IQ at age 6 in children from the 2004 Pelotas Birth Cohort: a predictive approach.

Authors:  Fabio Alberto Camargo-Figuera; Aluísio J D Barros; Iná S Santos; Alicia Matijasevich; Fernando C Barros
Journal:  BMC Pediatr       Date:  2014-12-16       Impact factor: 2.125

8.  Development of a predictive risk model for school readiness at age 3 years using the UK Millennium Cohort Study.

Authors:  Christine Camacho; Viviane S Straatmann; Jennie C Day; David Taylor-Robinson
Journal:  BMJ Open       Date:  2019-06-17       Impact factor: 2.692

9.  The Looking Glass for Intelligence Quotient Tests: The Interplay of Motivation, Cognitive Functioning, and Affect.

Authors:  Venkat Ram Reddy Ganuthula; Shuchi Sinha
Journal:  Front Psychol       Date:  2019-12-17

10.  Predictors of intelligence at the age of 5: family, pregnancy and birth characteristics, postnatal influences, and postnatal growth.

Authors:  Hanne-Lise Falgreen Eriksen; Ulrik Schiøler Kesmodel; Mette Underbjerg; Tina Røndrup Kilburn; Jacquelyn Bertrand; Erik Lykke Mortensen
Journal:  PLoS One       Date:  2013-11-13       Impact factor: 3.240

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